使用来自第二抗体建模评估的靶标对TriadAb进行基准测试。

IF 2.6 4区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY Protein Engineering Design & Selection Pub Date : 2023-01-21 DOI:10.1093/protein/gzad013
Frederick S Lee, Amos G Anderson, Barry D Olafson
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引用次数: 0

摘要

抗体的计算建模和设计已成为当今抗体治疗研究和开发的一个组成部分。在这里,我们描述了Triad抗体同源性建模(TriadAb)包,这是Triad蛋白质设计平台的一种功能,它使用基于模板的建模来预测抗体Fv结构域的任何重链和轻链序列的结构。为了评估TriadAb的性能,我们以第二次抗体建模评估(AMA-II)的结果为基准。平均而言,在框架和六个互补决定区(H1、H2、H3、L1、L2、L3)中,TriadAb在模型和实验确定的结构之间产生的主链羰基均方根偏差分别为1.10Å、1.45Å、1.41Å、3.04Å、1.4 7Å、1.27Å和1.63Å。最初的结果与AMA-II中报道的结果相当,与我们基于内部试验台的经验相证实,使用TriadAb生成的模型足够准确,可用于使用Triad提供的序列设计能力的抗体工程。
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Benchmarking TriadAb using targets from the second antibody modeling assessment.

Computational modeling and design of antibodies has become an integral part of today's research and development in antibody therapeutics. Here we describe the Triad Antibody Homology Modeling (TriadAb) package, a functionality of the Triad protein design platform that predicts the structure of any heavy and light chain sequences of an antibody Fv domain using template-based modeling. To gauge the performance of TriadAb, we benchmarked against the results of the Second Antibody Modeling Assessment (AMA-II). On average, TriadAb produced main-chain carbonyl root-mean-square deviations between models and experimentally determined structures at 1.10 Å, 1.45 Å, 1.41 Å, 3.04 Å, 1.47 Å, 1.27 Å, 1.63 Å in the framework and the six complementarity-determining regions (H1, H2, H3, L1, L2, L3), respectively. The inaugural results are comparable to those reported in AMA-II, corroborating with our internal bench-based experiences that models generated using TriadAb are sufficiently accurate and useful for antibody engineering using the sequence design capabilities provided by Triad.

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来源期刊
Protein Engineering Design & Selection
Protein Engineering Design & Selection 生物-生化与分子生物学
CiteScore
3.30
自引率
4.20%
发文量
14
审稿时长
6-12 weeks
期刊介绍: Protein Engineering, Design and Selection (PEDS) publishes high-quality research papers and review articles relevant to the engineering, design and selection of proteins for use in biotechnology and therapy, and for understanding the fundamental link between protein sequence, structure, dynamics, function, and evolution.
期刊最新文献
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